4.6 Article

Connectome-Based Predictive Modeling of Individual Anxiety

Journal

CEREBRAL CORTEX
Volume 31, Issue 6, Pages 3006-3020

Publisher

OXFORD UNIV PRESS INC
DOI: 10.1093/cercor/bhaa407

Keywords

anxiety; computational lesion; connectome-based predictive modeling (CPM); limbic system; resting-state functional connectivity

Categories

Funding

  1. National Natural Science Foundation of China [31920103009, 31530031, 31871137, 31700959, 31671133, 31500920]
  2. Young Elite Scientists Sponsorship Program by China Association for Science and Technology [YESS20180158]
  3. Guangdong International Scientific Collaboration Project [2019A050510048]
  4. Guangdong Key Basic Research Grant [2018B030332001]
  5. Guangdong young Innovative Talent Project [2016KQNCX149]
  6. Guangdong Pearl River Talents Plan Innovative and Entrepreneurial Team grant [2016ZT06S220]
  7. Guangdong University Innovation Team Project [2015KCXTD009]
  8. Guangdong Basic and Applied Research Major Project [2016KZDXM009]
  9. Shenzhen-Hong Kong Institute of Brain Science-Shenzhen Fundamental Research Institutions [2019SHIBS0003]
  10. Shenzhen Science and Technology Research Funding Program [JCYJ20180507183500566, CYJ20170412164413575, JCYJ20180305124819889]
  11. Shenzhen Peacock Program [827-000235, KQTD2015033016104926]

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This study successfully predicted trait anxiety in healthy participants using connectome-based predictive modeling, highlighting the important roles of the limbic system and prefrontal cortex in anxiety prediction. The neural model was able to generalize to an independent large sample, showing potential for identifying personality factors at risk for psychopathology.
Anxiety-related illnesses are highly prevalent in human society. Being able to identify neurobiological markers signaling high trait anxiety could aid the assessment of individuals with high risk for mental illness. Here, we applied connectome-based predictive modeling (CPM) to whole-brain resting-state functional connectivity (rsFC) data to predict the degree of trait anxiety in 76 healthy participants. Using a computational lesion approach in CPM, we then examined the weights of the identified main brain areas as well as their connectivity. Results showed that the CPM successfully predicted individual anxiety based on whole-brain rsFC, especially the rsFC between limbic areas and prefrontal cortex. The prediction power of the model significantly decreased from simulated lesions of limbic areas, lesions of the connectivity within limbic areas, and lesions of the connectivity between limbic areas and prefrontal cortex. Importantly, this neural model generalized to an independent large sample (n = 501). These findings highlight important roles of the limbic system and prefrontal cortex in anxiety prediction. Our work provides evidence for the usefulness of connectome-based modeling in predicting individual personality differences and indicates its potential for identifying personality factors at risk for psychopathology.

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